Automatic choroidal segmentation in OCT images using supervised deep learning methods

, , , , , Chen, Fred, & (2019) Automatic choroidal segmentation in OCT images using supervised deep learning methods. Scientific Reports, 9, Article number: 13298 1-13.

[img]
Preview
Published Version (PDF 2MB)
Sci Rep 2019 Kugelman.pdf.
Available under License Creative Commons Attribution 2.5.

Open access copy at publisher website

Description

The analysis of the choroid in the eye is crucial for our understanding of a range of ocular diseases and physiological processes. Optical coherence tomography (OCT) imaging provides the ability to capture highly detailed cross-sectional images of the choroid yet only a very limited number of commercial OCT instruments provide methods for automatic segmentation of choroidal tissue. Manual annotation of the choroidal boundaries is often performed but this is impractical due to the lengthy time taken to analyse large volumes of images. Therefore, there is a pressing need for reliable and accurate methods to automatically segment choroidal tissue boundaries in OCT images. In this work, a variety of patch-based and fully-convolutional deep learning methods are proposed to accurately determine the location of the choroidal boundaries of interest. The effect of network architecture, patch-size and contrast enhancement methods was tested to better understand the optimal architecture and approach to maximize performance. The results are compared with manual boundary segmentation used as a ground-truth, as well as with a standard image analysis technique. Results of total retinal layer segmentation are also presented for comparison purposes. The findings presented here demonstrate the benefit of deep learning methods for segmentation of the chorio-retinal boundary analysis in OCT images.

Impact and interest:

88 citations in Scopus
61 citations in Web of Science®
Search Google Scholar™

Citation counts are sourced monthly from Scopus and Web of Science® citation databases.

These databases contain citations from different subsets of available publications and different time periods and thus the citation count from each is usually different. Some works are not in either database and no count is displayed. Scopus includes citations from articles published in 1996 onwards, and Web of Science® generally from 1980 onwards.

Citations counts from the Google Scholar™ indexing service can be viewed at the linked Google Scholar™ search.

Full-text downloads:

144 since deposited on 18 Sep 2019
28 in the past twelve months

Full-text downloads displays the total number of times this work’s files (e.g., a PDF) have been downloaded from QUT ePrints as well as the number of downloads in the previous 365 days. The count includes downloads for all files if a work has more than one.

ID Code: 132773
Item Type: Contribution to Journal (Journal Article)
Refereed: Yes
ORCID iD:
Alonso-Caneiro, Davidorcid.org/0000-0002-7754-6592
Read, Scottorcid.org/0000-0002-1595-673X
Vincent, Stephenorcid.org/0000-0002-5998-1320
Collins, Michaelorcid.org/0000-0001-5226-5498
Measurements or Duration: 13 pages
Keywords: automatic segmentation, choroid, deep learning, optical coherence tomography
DOI: 10.1038/s41598-019-49816-4
ISSN: 2045-2322
Pure ID: 33494509
Divisions: Past > QUT Faculties & Divisions > Faculty of Health
Past > Institutes > Institute of Health and Biomedical Innovation
Copyright Owner: Consult author(s) regarding copyright matters
Copyright Statement: This work is covered by copyright. Unless the document is being made available under a Creative Commons Licence, you must assume that re-use is limited to personal use and that permission from the copyright owner must be obtained for all other uses. If the document is available under a Creative Commons License (or other specified license) then refer to the Licence for details of permitted re-use. It is a condition of access that users recognise and abide by the legal requirements associated with these rights. If you believe that this work infringes copyright please provide details by email to qut.copyright@qut.edu.au
Deposited On: 18 Sep 2019 23:34
Last Modified: 04 Aug 2024 16:39